Detection and Modeling of High-Dimensional Thresholds for Fault Detection and DiagnosisMany Fault Detection and Diagnosis (FDD) systems use discrete models for detection and reasoning. To obtain categorical values like oil pressure too high, analog sensor values need to be discretized using a suitablethreshold. Time series of analog and discrete sensor readings are processed and discretized as they come in. This task isusually performed by the wrapper code'' of the FDD system, together with signal preprocessing and filtering. In practice,selecting the right threshold is very difficult, because it heavily influences the quality of diagnosis. If a threshold causesthe alarm trigger even in nominal situations, false alarms will be the consequence. On the other hand, if threshold settingdoes not trigger in case of an off-nominal condition, important alarms might be missed, potentially causing hazardoussituations. In this paper, we will in detail describe the underlying statistical modeling techniques and algorithm as well as the Bayesian method for selecting the most likely shape and its parameters. Our approach will be illustrated by several examples from the Aerospace domain.
Document ID
20150018870
Acquisition Source
Ames Research Center
Document Type
Conference Paper
Authors
He, Yuning (California Univ. Santa Cruz, CA, United States)
Date Acquired
October 7, 2015
Publication Date
June 22, 2015
Subject Category
Computer Programming And SoftwareStatistics And Probability
Report/Patent Number
ARC-E-DAA-TN23964Report Number: ARC-E-DAA-TN23964
Meeting Information
Meeting: International Conference on Prognostics and Health Management
Location: Austin, TX
Country: United States
Start Date: June 22, 2015
End Date: June 25, 2015
Sponsors: Institute of Electrical and Electronics Engineers